用人工神经网络预测柴油机排气物性

R. Ghiasi, M. Ettefagh, V. Sadeghi, Y. Ajabshirchi, M. Taki
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引用次数: 1

摘要

近年来,人工神经网络(ANN)方法已成为内燃机特征参数分析的一种有效方法。同时,最佳网络结构的确定也是本分支研究工作的重要组成部分。因此,本课题是本课题研究的主要思路。确定了预测发动机两个重要后处理参数最可靠的网络结构。这些参数是气体在EVO(排气阀开启)时间的压力和温度。将四个人工神经网络模型的输出结果与一个可靠的多区燃烧模型的结果进行了比较。本研究中考虑的人工神经网络模型分别为MLP (Multi Layer Perception)、RBF (Radial Basis Function)、SOM (Self - Organized Map)和GFF (Generalized Feed Forward),训练算法分别为LM (Levenberg Marquart)和MOM (Momentum)。最后,提出了最合适的MLP-LM模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of a diesel engine exhaust gases physical properties with artificial neural network
In recent years, ANN (artificial neural network) method has been used as an effective method for analyses of the characteristic parameters in internal combustion engines. Also, determination of the best network structure is an important part of the research work in this branch. So, this subject is the main idea of the current study. The most reliable network structure has been determined for prediction of two important engine after-treatment parameters. These parameters are pressure and temperature of the gases at EVO (exhaust valve opening) time. Outputs of four ANN models have been compared with the results of a reliable developed multi-zone combustion model. The ANN models, which have been considered in this research work, are MLP (Multi Layer Perception), RBF (Radial Basis Function), SOM (Self Organized Map) and GFF (Generalized Feed Forward) with training algorithms of LM (Levenberg Marquart) and MOM (Momentum), respectively. Finally, the MLP-LM model has been proposed as the most appropriate model.
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